Sobolev Neural Network With Residual Weighting as a Surrogate in Linear and Non-Linear Mechanics

被引:0
|
作者
Kilicsoy, A. O. M. [1 ]
Liedmann, J. [2 ]
Valdebenito, M. A. [1 ]
Barthold, F. -J. [2 ]
Faes, M. G. R. [1 ]
机构
[1] Tech Univ Dortmund, Fak Maschinenbau, Chair Reliabil Engn, D-44227 Dortmund, Germany
[2] Tech Univ Dortmund, Fak Architektur & Bauingn, Lehrstuhl Baumechan, D-44227 Dortmund, Germany
来源
IEEE ACCESS | 2024年 / 12卷
关键词
Training; Neural networks; Finite element analysis; Mathematical models; Vectors; Training data; Numerical models; Machine learning; Sobolev training; residual weighting; finite element modelling; linear and non-linear mechanics; neural networks; optimization; surrogate model; RELIABILITY-ANALYSIS; BIG DATA; DESIGN;
D O I
10.1109/ACCESS.2024.3465572
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Areas of computational mechanics such as uncertainty quantification and optimization usually involve repeated evaluation of numerical models that represent the behavior of engineering systems. In the case of complex non-linear systems however, these models tend to be expensive to evaluate, making surrogate models quite valuable. Artificial neural networks approximate systems very well by taking advantage of the inherent information of its given training data. In this context, this paper investigates the improvement of the training process by including sensitivity information, which are partial derivatives w.r.t. inputs, as outlined by Sobolev training. In computational mechanics, sensitivities can be applied to neural networks by expanding the training loss function with additional loss terms, thereby improving training convergence resulting in lower generalisation error. This improvement is shown in two examples of linear and non-linear material behavior. More specifically, the Sobolev designed loss function is expanded with residual weights adjusting the effect of each loss on the training step. Residual weighting is the given scaling to the different training data, which in this case are response and sensitivities. These residual weights are optimized by an adaptive scheme, whereby varying objective functions are explored, with some showing improvements in accuracy and precision of the general training convergence.
引用
收藏
页码:137144 / 137161
页数:18
相关论文
共 50 条
  • [32] A new framework of neural network for non-linear system modeling
    Mizukami, Y
    Satoh, T
    Tanaka, K
    ICONIP'02: PROCEEDINGS OF THE 9TH INTERNATIONAL CONFERENCE ON NEURAL INFORMATION PROCESSING: COMPUTATIONAL INTELLIGENCE FOR THE E-AGE, 2002, : 65 - 69
  • [33] Implementation of neural network based non-linear predictive control
    Sorensen, PH
    Norgaard, M
    Ravn, O
    Poulsen, NK
    NEUROCOMPUTING, 1999, 28 : 37 - 51
  • [34] Non-linear Pole-placement Control with a Neural Network
    Sorensen, Ole
    EUROPEAN JOURNAL OF CONTROL, 1996, 2 (01) : 36 - 43
  • [35] Predicting residual strength of non-linear ultrasonically evaluated damaged concrete using artificial neural network
    Shah, Abid A.
    Alsayed, Saleh H.
    Abbas, H.
    Al-Salloum, Yousef A.
    CONSTRUCTION AND BUILDING MATERIALS, 2012, 29 : 42 - 50
  • [36] A non-linear problem involving a critical Sobolev exponent
    Bae, Soohyun
    Hadiji, Rejeb
    Vigneron, Francois
    Yazidi, Habib
    JOURNAL OF MATHEMATICAL ANALYSIS AND APPLICATIONS, 2012, 396 (01) : 98 - 107
  • [37] Artificial neural networks and intelligent finite elements in non-linear structural mechanics
    Stoffel, Marcus
    Bamer, Franz
    Markert, Bernd
    THIN-WALLED STRUCTURES, 2018, 131 : 102 - 106
  • [38] To the Development and Perspective of Some Linear and Non-linear Problems of Continuum Mechanics
    Vashakmadze, Tamaz
    Buzhghulashvili, Giorgi
    LOBACHEVSKII JOURNAL OF MATHEMATICS, 2024, 45 (08) : 3783 - 3809
  • [39] On the use of compatibility conditions for the strain in linear and non-linear theories of mechanics
    Rajagopal, Kumbakonam R.
    Srinivasa, Arun R.
    MATHEMATICS AND MECHANICS OF SOLIDS, 2015, 20 (05) : 614 - 618
  • [40] ON NON-LINEAR NONEQUILIBRIUM STATISTICAL-MECHANICS
    USAGAWA, T
    PHYSICS LETTERS A, 1981, 83 (05) : 199 - 202